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首页> 外文期刊>IEEE Transactions on Neural Networks >Accurate and Fast Off and Online Fuzzy ARTMAP-Based Image Classification With Application to Genetic Abnormality Diagnosis
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Accurate and Fast Off and Online Fuzzy ARTMAP-Based Image Classification With Application to Genetic Abnormality Diagnosis

机译:基于精确快速断续和在线模糊ARTMAP的图像分类及其在遗传异常诊断中的应用

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摘要

We propose and investigate the fuzzy ARTMAP neural network in off and online classification of fluorescence in situ hybridization image signals enabling clinical diagnosis of numerical genetic abnormalities. We evaluate the classification task (detecting a several abnormalities separately or simultaneously), classifier paradigm (monolithic or hierarchical), ordering strategy for the training patterns (averaging or voting), training mode (for one epoch, with validation or until completion) and model sensitivity to parameters. We find the fuzzy ARTMAP accurate in accomplishing both tasks requiring only very few training epochs. Also, selecting a training ordering by voting is more precise than if averaging over orderings. If trained for only one epoch, the fuzzy ARTMAP provides fast, yet stable and accurate learning as well as insensitivity to model complexity. Early stop of training using a validation set reduces the fuzzy ARTMAP complexity as for other machine learning models but cannot improve accuracy beyond that achieved when training is completed. Compared to other machine learning models, the fuzzy ARTMAP does not loose but gain accuracy when overtrained, although increasing its number of categories. Learned incrementally, the fuzzy ARTMAP reaches its ultimate accuracy very fast obtaining most of its data representation capability and accuracy by using only a few examples. Finally, the fuzzy ARTMAP accuracy for this domain is comparable with those of the multilayer perceptron and support vector machine and superior to those of the naive Bayesian and linear classifiers.
机译:我们提出并研究模糊原位杂交神经网络的荧光原位杂交图像信号的在线分类的模糊ARTMAP神经网络,从而能够对数字遗传异常进行临床诊断。我们评估分类任务(分别或同时检测多个异常),分类器范式(整体或分层),训练​​模式的排序策略(平均或投票),训练模式(一个时期,经过验证或直到完成)和模型对参数的敏感性。我们发现模糊的ARTMAP可以准确地完成仅需很少训练时间的两项任务。而且,通过投票选择训练顺序比对顺序进行平均要精确得多。如果仅训练一个时期,那么模糊ARTMAP可以提供快速,稳定和准确的学习,并且对模型复杂性不敏感。像其他机器学习模型一样,使用验证集进行训练的提前停止可以降低模糊ARTMAP的复杂性,但是无法提高准确性,而无法完成训练。与其他机器学习模型相比,模糊ARTMAP不会过度放松,但在过度训练时会提高准确性,尽管它会增加类别的数量。通过逐步学习,模糊ARTMAP仅通过几个示例就可以非常快地获得其最高的数据表示能力和准确性。最后,该域的模糊ARTMAP精度与多层感知器和支持向量机的精度相当,并且优于朴素贝叶斯和线性分类器。

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